Machine learning-based classification of adrenal tumors using clinical, hormonal, and body composition data.

IF 5.2 1区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Seung Shin Park, Jongsung Noh, Jinhee Kim, Taesung Kim, Hae Jin Seo, Chang Ho Ahn, Jaegul Choo, Man Ho Choi, Jung Hee Kim
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Abstract

Objective: Accurate diagnosis of adrenal tumors, including mild autonomous cortisol secretion (MACS), adrenal Cushing's syndrome (ACS), primary aldosteronism (PA), pheochromocytoma (PCC), and nonfunctioning adrenal adenomas (NFAs), is crucial but challenging. We aimed to develop a machine learning (ML)-based single-step diagnostic method for differentiating adrenal tumors by integrating clinical data, serum adrenal hormone profiles (SAPs), and body composition data.

Methods: A total of 641 patients with adrenal tumors (MACS = 141, ACS = 64, PA = 265, PCC = 78, and NFA = 93), excluding adrenal metastases and adrenocortical carcinoma, were enrolled from Seoul National University Hospital. Patients were randomly divided into training and test cohorts at a 4:1 ratio. The ML models were developed to differentiate adrenal tumors using 32 clinical data points, 49 SAP markers, and 15 body composition data points.

Results: The best-performing ML model for differentiating all 5 adrenal tumors achieved a balanced accuracy of 0.78, sensitivity of 0.77, specificity of 0.93, and area under the curve (AUC) of 0.89. To distinguish MACS, ACS, PA, and PCC from NFA, the accuracies were 0.85, 0.94, 0.78, and 0.86, with AUCs of 0.96, 0.99, 0.90, and 0.94, respectively. The ML model differentiating between NFA and the other functioning adrenal tumors exhibited an accuracy of 0.75 and an AUC of 0.79. The SAP features were identified as the most critical for differentiation, whereas body composition data contributed only minimally.

Conclusions: The ML model demonstrates high diagnostic accuracy in differentiating adrenal tumor subtypes by integrating clinical data, body composition, and SAP, potentially reducing the need for invasive procedures and aiding clinical decision-making.

使用临床、激素和身体成分数据的基于机器学习的肾上腺肿瘤分类。
目的:准确诊断包括轻度自主皮质醇分泌(MACS)、肾上腺库欣综合征(ACS)、原发性醛固酮增多症(PA)、嗜铬细胞瘤(PCC)和无功能肾上腺腺瘤(NFA)在内的肾上腺肿瘤至关重要,但具有挑战性。我们的目标是通过整合临床数据开发一种基于机器学习(ML)的单步诊断方法来鉴别肾上腺肿瘤;血清肾上腺激素谱(SAP);身体成分数据。方法:选取首尔大学医院排除肾上腺转移瘤和肾上腺皮质癌的641例肾上腺肿瘤患者(MACS=141, ACS=64, PA=265, PCC=78, NFA=93)。患者按4:1的比例随机分为训练组和测试组。使用32个临床数据点、49个SAP标记物和15个体成分数据点建立ML模型来区分肾上腺肿瘤。结果:ML模型鉴别5种肾上腺肿瘤的最佳准确度为0.78,灵敏度为0.77,特异性为0.93,曲线下面积(AUC)为0.89。区分MACS、ACS、PA和PCC与NFA的准确率分别为0.85、0.94、0.78和0.86,auc分别为0.96、0.99、0.90和0.94。ML模型区分NFA和其他功能肾上腺肿瘤的准确率为0.75,AUC为0.79。SAP特征被认为是分化的最关键因素,而身体成分数据的贡献最小。结论:ML模型通过整合临床数据、机体成分和SAP,对肾上腺肿瘤亚型有较高的诊断准确性,有可能减少侵入性手术的需要,帮助临床决策。
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来源期刊
European Journal of Endocrinology
European Journal of Endocrinology 医学-内分泌学与代谢
CiteScore
9.80
自引率
3.40%
发文量
354
审稿时长
1 months
期刊介绍: European Journal of Endocrinology is the official journal of the European Society of Endocrinology. Its predecessor journal is Acta Endocrinologica. The journal publishes high-quality original clinical and translational research papers and reviews in paediatric and adult endocrinology, as well as clinical practice guidelines, position statements and debates. Case reports will only be considered if they represent exceptional insights or advances in clinical endocrinology. Topics covered include, but are not limited to, Adrenal and Steroid, Bone and Mineral Metabolism, Hormones and Cancer, Pituitary and Hypothalamus, Thyroid and Reproduction. In the field of Diabetes, Obesity and Metabolism we welcome manuscripts addressing endocrine mechanisms of disease and its complications, management of obesity/diabetes in the context of other endocrine conditions, or aspects of complex disease management. Reports may encompass natural history studies, mechanistic studies, or clinical trials. Equal consideration is given to all manuscripts in English from any country.
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